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Essays on Intraday Stock Return Predictability

Essays on Intraday Stock Return Predictability PDF Author: Zeming Li
Publisher:
ISBN:
Category :
Languages : en
Pages :

Book Description


Essays on Intraday Stock Return Predictability

Essays on Intraday Stock Return Predictability PDF Author: Zeming Li
Publisher:
ISBN:
Category :
Languages : en
Pages :

Book Description


Three Essays on Predictability and Seasonality in the Cross-Section of Stock Returns

Three Essays on Predictability and Seasonality in the Cross-Section of Stock Returns PDF Author: Vincent Jean Bogousslavsky
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ISBN:
Category :
Languages : en
Pages :

Book Description
Mots-clés de l'auteur: Return Predictability ; Return Seasonality ; Asset Pricing Anomalies ; Intraday Returns ; Liquidity ; Infrequent Rebalancing.

Essays on Stock Return Predictability and Market Efficiency

Essays on Stock Return Predictability and Market Efficiency PDF Author: Lei Jiang
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ISBN:
Category :
Languages : en
Pages : 0

Book Description


Essays on Return Predictability and Volatility Estimation

Essays on Return Predictability and Volatility Estimation PDF Author: Yuzhao Zhang
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ISBN:
Category : Investments
Languages : en
Pages : 316

Book Description


Three Essays on the Predictability of Stock Returns

Three Essays on the Predictability of Stock Returns PDF Author: Amit Goyal
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ISBN:
Category : Stocks
Languages : en
Pages : 374

Book Description


Essays on the Predictability and Volatility of Returns in the Stock Market

Essays on the Predictability and Volatility of Returns in the Stock Market PDF Author: Ruojun Wu
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ISBN:
Category : Bayesian statistical decision theory
Languages : en
Pages : 137

Book Description
This dissertation studies the effect of parameter uncertainty on the return predictability and volatility of the stock market. The first two chapters focus on the decomposition of market volatility, and the third chapter studies the return predictability. When facing imperfect information, the investors tend to form a learning scheme that encompasses both historical data and prior beliefs. In the variance decomposition framework, the introducing of learning directly impacts the way that return forecasts are revised and consequently the relative component of market volatility based on these forecasts, namely the price movements from revision on future discount rates and those from future cash flows. According to the empirical study in Chapter 1, the former is not necessarily the major driving force of market volatility, which provides an alternative view on what moves stock prices. Learning is modeled and estimated by Bayesian method. Chapter 2 follows the topic in Chapter 1 and studies the role of persistent state variables in return decomposition in order to provide more robust inference on variance decomposition. In Chapter 3 we propose to utilize theoretical constraints to help predict market returns when in sample data is very noisy and creates model uncertainty for the investors. The constraints are also incorporated by Bayesian method. We show in the out-of-sample forecast experiment that models with theoretical constraints produce better forecasts.

Essays on Stock Return Predictability and Portfolio Allocation

Essays on Stock Return Predictability and Portfolio Allocation PDF Author: Bradley Steele Paye
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ISBN:
Category : Asset allocation
Languages : en
Pages : 380

Book Description


Essays on Predicting and Explaining the Cross Section of Stock Returns

Essays on Predicting and Explaining the Cross Section of Stock Returns PDF Author: Xun Zhong
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ISBN:
Category :
Languages : en
Pages : 181

Book Description
My dissertation consists of three chapters that study various aspects of stock return predictability. In the first chapter, I explore the interplay between the aggregation of information about stock returns and p-hacking. P-hacking refers to the practice of trying out various variables and model specifications until the result appears to be statistically significant, that is, the p-value of the test statistic is below a particular threshold. The standard information aggregation techniques exacerbate p-hacking by increasing the probability of the type I error. I propose an aggregation technique, which is a simple modification of 3PRF/PLS, that has an opposite property: the predictability tests applied to the combined predictor become more conservative in the presence of p-hacking. I quantify the advantages of my approach relative to the standard information aggregation techniques by using simulations. As an illustration, I apply the modified 3PRF/PLS to three sets of return predictors proposed in the literature and find that the forecasting ability of combined predictors in two cases cannot be explained by p-hacking. In the second chapter, I explore whether the stochastic discount factors (SDFs) of five characteristic-based asset pricing models can be explained by a large set of macroeconomic shocks. Characteristic-based factor models are linear models whose risk factors are returns on trading strategies based on firm characteristics. Such models are very popular in finance because of their superior ability to explain the cross-section of expected stock returns, but they are also criticized for their lack of interpretability. Each characteristic-based factor model is uniquely characterized by its SDF. To approximate the SDFs by a comprehensive set of 131 macroeconomic shocks without overfitting, I employ the elastic net regression, which is a machine learning technique. I find that the best combination of macroeconomic shocks can explain only a relatively small part of the variation in the SDFs, and the whole set of macroeconomic shocks approximates the SDFs not better than only few shocks. My findings suggest that behavioral factors and sentiment are important determinants of asset prices. The third chapter investigates whether investors efficiently aggregate analysts' earnings forecasts and whether combinations of the forecasts can predict announcement returns. The traditional consensus forecast of earnings used by academics and practitioners is the simple average of all analysts' earnings forecasts (Naive Consensus). However, this measure ignores that there exists a cross-sectional variation in analysts' forecast accuracy and persistence in such accuracy. I propose a consensus that is an accuracy-weighted average of all analysts' earnings forecasts (Smart Consensus). I find that Smart Consensus is a more accurate predictor of firms' earnings per share (EPS) than Naive Consensus. If investors weight forecasts efficiently according to the analysts' forecast accuracy, the market reaction to earnings announcements should be positively related to the difference between firms' reported earnings and Smart Consensus (Smart Surprise) and should be unrelated to the difference between firms' reported earnings and Naive Consensus (Naive Surprise). However, I find that market reaction to earnings announcements is positively related to both measures. Thus, investors do not aggregate forecasts efficiently. In addition, I find that the market reaction to Smart Surprise is stronger in stocks with higher institutional ownership. A trading strategy based on Expectation Gap, which is the difference between Smart and Naive Consensuses, generates positive risk-adjusted returns in the three-day window around earnings announcements.

Essays on Return Predictability and Term Structure Modelling

Essays on Return Predictability and Term Structure Modelling PDF Author: Sebastian Fux
Publisher:
ISBN: 9788793155183
Category :
Languages : en
Pages : 159

Book Description


Essays on the cross-sectional predictability of stock returns

Essays on the cross-sectional predictability of stock returns PDF Author: Mihai B. Ion
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ISBN:
Category :
Languages : en
Pages : 0

Book Description